A hybrid approach towards minimizing the semantic gap in image retrieval by combining classical and content based techniques
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Abstract
Number of internet users has been increased drastically over past few years and so the need for
secure, reliable and accurate information retrieval mechanisms. The increasing population over
web creates loads of information and user data over web. It can include textual information,
multimedia content, content specific URL’s, personal information and other. Due to all this
retrieval of information becomes difficult on fast and efficiency scale. There are search engines
that are used to retrieve multimedia data called vertical search engines.
In spite of the upset in web indexes, there can be other issues which fails to meet client
necessities and results in semantic gap between user search and the outcome. Other thing that can
be often viewed is the content relevance. There are various search engines available that are
classified into two categories known as text based search engine (traditional) and content based
search engines (content based). Text-based Search Engines are simpler to implement but are
sometimes contradictory in results, as they completely rely on the occurrence of query term in
surrounding text. In case of absence of surrounding texts it fails to load the results or sometimes
loads improper results. Also it fails to recognize the synonyms and fails to load those results.
Whereas on the other hand content based retrieval is based on matching the user input query with
that of the content present in the data pool. In this each feature of input query is matched against
the available resources in database. Hence the results are generated with high quality and are
more accurate. But it involves higher computation time and sometimes involves computation
overhead.
Here, in following work, a technique is used which combines both the classical approach and
content based. The overview of the task being done is extracting both textual features and visual
features from images and its metadata. As both techniques are combined, result will have higher
content relevance and much lower overhead time and response time.
Description
A hybrid approach towards minimizing the semantic gap in image retrieval by combining classical and content based techniques”
